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Main Authors: Wang, Haoxiao, Xiang, Antao, Sun, Haiyang, Sun, Peilin, Pan, Changhao, Chen, Yifu, Hong, Minjie, Wang, Weijie, Chen, Shuang, Chen, Yue, Zhao, Zhou
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.24575
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author Wang, Haoxiao
Xiang, Antao
Sun, Haiyang
Sun, Peilin
Pan, Changhao
Chen, Yifu
Hong, Minjie
Wang, Weijie
Chen, Shuang
Chen, Yue
Zhao, Zhou
author_facet Wang, Haoxiao
Xiang, Antao
Sun, Haiyang
Sun, Peilin
Pan, Changhao
Chen, Yifu
Hong, Minjie
Wang, Weijie
Chen, Shuang
Chen, Yue
Zhao, Zhou
contents Diffusion models are primarily trained for image synthesis, yet their denoising trajectories encode rich, spatially aligned visual priors. In this paper, we demonstrate that these priors can be utilized for text-conditioned semantic and open-vocabulary segmentation, and this approach can be generalized to various downstream tasks to make a general-purpose diffusion segmentation framework. Concretely, we introduce DiGSeg (Diffusion Models as a Generalist Segmentation Learner), which repurposes a pretrained diffusion model into a unified segmentation framework. Our approach encodes the input image and ground-truth mask into the latent space and concatenates them as conditioning signals for the diffusion U-Net. A parallel CLIP-aligned text pathway injects language features across multiple scales, enabling the model to align textual queries with evolving visual representations. This design transforms an off-the-shelf diffusion backbone into a universal interface that produces structured segmentation masks conditioned on both appearance and arbitrary text prompts. Extensive experiments demonstrate state-of-the-art performance on standard semantic segmentation benchmarks, as well as strong open-vocabulary generalization and cross-domain transfer to medical, remote sensing, and agricultural scenarios-without domain-specific architectural customization. These results indicate that modern diffusion backbones can serve as generalist segmentation learners rather than pure generators, narrowing the gap between visual generation and visual understanding.
format Preprint
id arxiv_https___arxiv_org_abs_2604_24575
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Diffusion Model as a Generalist Segmentation Learner
Wang, Haoxiao
Xiang, Antao
Sun, Haiyang
Sun, Peilin
Pan, Changhao
Chen, Yifu
Hong, Minjie
Wang, Weijie
Chen, Shuang
Chen, Yue
Zhao, Zhou
Computer Vision and Pattern Recognition
Diffusion models are primarily trained for image synthesis, yet their denoising trajectories encode rich, spatially aligned visual priors. In this paper, we demonstrate that these priors can be utilized for text-conditioned semantic and open-vocabulary segmentation, and this approach can be generalized to various downstream tasks to make a general-purpose diffusion segmentation framework. Concretely, we introduce DiGSeg (Diffusion Models as a Generalist Segmentation Learner), which repurposes a pretrained diffusion model into a unified segmentation framework. Our approach encodes the input image and ground-truth mask into the latent space and concatenates them as conditioning signals for the diffusion U-Net. A parallel CLIP-aligned text pathway injects language features across multiple scales, enabling the model to align textual queries with evolving visual representations. This design transforms an off-the-shelf diffusion backbone into a universal interface that produces structured segmentation masks conditioned on both appearance and arbitrary text prompts. Extensive experiments demonstrate state-of-the-art performance on standard semantic segmentation benchmarks, as well as strong open-vocabulary generalization and cross-domain transfer to medical, remote sensing, and agricultural scenarios-without domain-specific architectural customization. These results indicate that modern diffusion backbones can serve as generalist segmentation learners rather than pure generators, narrowing the gap between visual generation and visual understanding.
title Diffusion Model as a Generalist Segmentation Learner
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2604.24575